Optimization of a Hybrid Off-Grid Solar PV—Hydro Power Systems for Rural Electrification in Cameroon

IF 1.2 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Chu Donatus Iweh, Guy Clarence Sèmassou, R. Ahouansou
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Abstract

The use of decentralized renewable energy systems will continue to play a significant role in electricity generation especially in developing countries where grid expansion to most remote areas is uneconomical. The income levels of these off-grid communities are often low, such that there is a need for the delivery of cost-effective energy solutions through optimum control and sizing of energy system components. This paper aims at minimizing the net present cost (NPC) and the levelised cost of energy (LCOE). The study presents a hybrid power system involving a hydroelectric, solar photovoltaic (PV), and battery system for a rural community in Cameroon. The optimization of the system was done using HOMER Pro and validated using a meta-heuristic algorithm known as genetic algorithm (GA). The GA approach was programmed using the MATLAB software. After the HOMER simulation, the optimal power capacity of 3 kW solar PV, 334.89 Ah battery, and 32.2 kW microhydropower was used to meet the load. The village load profile had a daily energy usage of 431.32 kWh/day and a peak power demand of 38.49 kW. The optimized results showed an NPC and LCOE of $90,469.16 and 0.0453 $/kWh, respectively. The system configuration was tested against an increase in hydropower capacity, and it was observed that increasing the hydropower capacity has the ability to significantly reduce the LCOE as well as the battery and solar PV size. A comparative analysis of the two approaches showed that the optimization using GA was more cost-effective than HOMER Pro with the least LCOE of 0.0344 $/kWh and NPC of $86,990.94 as well as a loss of power supply probability (LPSP) of 0.99%. In addition, the GA method gave more hydropower generation than HOMER Pro. This supports the fact that stochastic methods are more realistic and economically viable. They also accurately predict system operation than deterministic methods.
优化喀麦隆农村电气化离网太阳能光伏-水力发电混合系统
分散式可再生能源系统的使用将继续在发电方面发挥重要作用,尤其是在发展中国家,因为将电网扩展到大多数偏远地区并不经济。这些离网社区的收入水平往往很低,因此需要通过优化能源系统组件的控制和大小来提供具有成本效益的能源解决方案。本文旨在最大限度地降低净现值成本(NPC)和平准化能源成本(LCOE)。研究介绍了喀麦隆一个农村社区的混合动力系统,包括水电、太阳能光伏(PV)和电池系统。系统优化使用 HOMER Pro 完成,并使用一种称为遗传算法 (GA) 的元启发式算法进行验证。遗传算法使用 MATLAB 软件进行编程。经过 HOMER 仿真,使用 3 kW 太阳能光伏发电、334.89 Ah 蓄电池和 32.2 kW 微水电的最佳发电量来满足负荷。该村的负荷情况为:日用电量 431.32 kWh/天,峰值电力需求 38.49 kW。优化结果显示,NPC 和 LCOE 分别为 90,469.16 美元和 0.0453 美元/千瓦时。该系统配置针对增加水电容量进行了测试,结果表明,增加水电容量能够显著降低 LCOE 以及电池和太阳能光伏发电的规模。两种方法的对比分析表明,使用 GA 进行优化比 HOMER Pro 更具成本效益,LCOE 最低为 0.0344 美元/千瓦时,NPC 最低为 86,990.94 美元,供电损失概率 (LPSP) 最低为 0.99%。此外,GA 方法的水力发电量高于 HOMER Pro。这证明了随机方法更加现实和经济可行。与确定性方法相比,随机方法还能准确预测系统运行情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Electrical and Computer Engineering
Journal of Electrical and Computer Engineering COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.20
自引率
0.00%
发文量
152
审稿时长
19 weeks
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